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Journal section "Social problems of the development of territories"

Neural Networks in Agent-Based Models: Advantages and Disadvantages of Hybrid Research Methods

Doroshenko T.A., Rossoshanskaya E.A.

4 (39), 2017

Doroshenko T.A., Rossoshanskaya E.A. Neural Networks in Agent-Based Models: Advantages and Disadvantages of Hybrid Research Methods. Territorial development issues, 2017, no. 4 (39). URL: http://vtr.isert-ran.ru/article/2363?_lang=en

Abstract   |   Authors   |   References
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